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Learning context-aware adaptive solvers to accelerate quadratic programming

22 November 2022
Haewon Jung
Junyoung Park
Jinkyoo Park
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Abstract

Convex quadratic programming (QP) is an important sub-field of mathematical optimization. The alternating direction method of multipliers (ADMM) is a successful method to solve QP. Even though ADMM shows promising results in solving various types of QP, its convergence speed is known to be highly dependent on the step-size parameter ρ\rhoρ. Due to the absence of a general rule for setting ρ\rhoρ, it is often tuned manually or heuristically. In this paper, we propose CA-ADMM (Context-aware Adaptive ADMM)) which learns to adaptively adjust ρ\rhoρ to accelerate ADMM. CA-ADMM extracts the spatio-temporal context, which captures the dependency of the primal and dual variables of QP and their temporal evolution during the ADMM iterations. CA-ADMM chooses ρ\rhoρ based on the extracted context. Through extensive numerical experiments, we validated that CA-ADMM effectively generalizes to unseen QP problems with different sizes and classes (i.e., having different QP parameter structures). Furthermore, we verified that CA-ADMM could dynamically adjust ρ\rhoρ considering the stage of the optimization process to accelerate the convergence speed further.

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